import anthropic
import httpx
import openai
import opentelemetry.trace as trace_api
import pydantic_ai
import pydantic_ai.models
import requests
from . import async_ as async_
from ..integrations.aiohttp_client import RequestHook as AiohttpClientRequestHook, ResponseHook as AiohttpClientResponseHook
from ..integrations.flask import CommenterOptions as FlaskCommenterOptions, RequestHook as FlaskRequestHook, ResponseHook as FlaskResponseHook
from ..integrations.httpx import AsyncRequestHook as HttpxAsyncRequestHook, AsyncResponseHook as HttpxAsyncResponseHook, RequestHook as HttpxRequestHook, ResponseHook as HttpxResponseHook
from ..integrations.psycopg import CommenterOptions as PsycopgCommenterOptions
from ..integrations.redis import RequestHook as RedisRequestHook, ResponseHook as RedisResponseHook
from ..integrations.sqlalchemy import CommenterOptions as SQLAlchemyCommenterOptions
from ..integrations.wsgi import RequestHook as WSGIRequestHook, ResponseHook as WSGIResponseHook
from ..version import VERSION as VERSION
from .auto_trace import AutoTraceModule as AutoTraceModule, install_auto_tracing as install_auto_tracing
from .config import GLOBAL_CONFIG as GLOBAL_CONFIG, LogfireConfig as LogfireConfig
from .config_params import PydanticPluginRecordValues as PydanticPluginRecordValues
from .constants import ATTRIBUTES_JSON_SCHEMA_KEY as ATTRIBUTES_JSON_SCHEMA_KEY, ATTRIBUTES_LOG_LEVEL_NUM_KEY as ATTRIBUTES_LOG_LEVEL_NUM_KEY, ATTRIBUTES_MESSAGE_KEY as ATTRIBUTES_MESSAGE_KEY, ATTRIBUTES_MESSAGE_TEMPLATE_KEY as ATTRIBUTES_MESSAGE_TEMPLATE_KEY, ATTRIBUTES_SAMPLE_RATE_KEY as ATTRIBUTES_SAMPLE_RATE_KEY, ATTRIBUTES_SPAN_TYPE_KEY as ATTRIBUTES_SPAN_TYPE_KEY, ATTRIBUTES_TAGS_KEY as ATTRIBUTES_TAGS_KEY, DISABLE_CONSOLE_KEY as DISABLE_CONSOLE_KEY, LEVEL_NUMBERS as LEVEL_NUMBERS, LevelName as LevelName, OTLP_MAX_INT_SIZE as OTLP_MAX_INT_SIZE, log_level_attributes as log_level_attributes
from .formatter import logfire_format as logfire_format, logfire_format_with_magic as logfire_format_with_magic
from .instrument import instrument as instrument
from .integrations.asgi import ASGIApp as ASGIApp, ASGIInstrumentKwargs as ASGIInstrumentKwargs
from .integrations.aws_lambda import LambdaEvent as LambdaEvent, LambdaHandler as LambdaHandler
from .integrations.mysql import MySQLConnection as MySQLConnection
from .integrations.psycopg import Psycopg2Connection as Psycopg2Connection, PsycopgConnection as PsycopgConnection
from .integrations.sqlite3 import SQLite3Connection as SQLite3Connection
from .integrations.system_metrics import Base as SystemMetricsBase, Config as SystemMetricsConfig
from .json_encoder import logfire_json_dumps as logfire_json_dumps
from .json_schema import JsonSchemaProperties as JsonSchemaProperties, attributes_json_schema as attributes_json_schema, attributes_json_schema_properties as attributes_json_schema_properties, create_json_schema as create_json_schema
from .metrics import ProxyMeterProvider as ProxyMeterProvider
from .stack_info import get_user_stack_info as get_user_stack_info
from .tracer import ProxyTracerProvider as ProxyTracerProvider, record_exception as record_exception, set_exception_status as set_exception_status
from .utils import SysExcInfo as SysExcInfo, get_version as get_version, handle_internal_errors as handle_internal_errors, log_internal_error as log_internal_error, uniquify_sequence as uniquify_sequence
from collections.abc import Iterable, Sequence
from contextlib import AbstractContextManager
from django.http import HttpRequest as HttpRequest, HttpResponse as HttpResponse
from fastapi import FastAPI
from flask.app import Flask
from opentelemetry.context import Context as Context
from opentelemetry.instrumentation.asgi.types import ClientRequestHook, ClientResponseHook, ServerRequestHook
from opentelemetry.metrics import CallbackT as CallbackT, Counter, Histogram, UpDownCounter, _Gauge as Gauge
from opentelemetry.sdk.trace import ReadableSpan, Span
from opentelemetry.trace import SpanContext, Tracer
from opentelemetry.util import types as otel_types
from pymongo.monitoring import CommandFailedEvent as CommandFailedEvent, CommandStartedEvent as CommandStartedEvent, CommandSucceededEvent as CommandSucceededEvent
from sqlalchemy import Engine
from sqlalchemy.ext.asyncio import AsyncEngine
from starlette.applications import Starlette
from starlette.requests import Request as Request
from starlette.websockets import WebSocket as WebSocket
from types import ModuleType
from typing import Any, Callable, Literal, TypeVar, overload
from typing_extensions import LiteralString, ParamSpec, Unpack
from wsgiref.types import WSGIApplication

ExcInfo = SysExcInfo | BaseException | bool | None

class Logfire:
    """The main logfire class."""
    def __init__(self, *, config: LogfireConfig = ..., sample_rate: float | None = None, tags: Sequence[str] = (), console_log: bool = True, otel_scope: str = 'logfire') -> None: ...
    @property
    def config(self) -> LogfireConfig: ...
    def trace(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log a trace message.

        ```py
        import logfire

        logfire.configure()

        logfire.trace('This is a trace log')
        ```

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    def debug(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log a debug message.

        ```py
        import logfire

        logfire.configure()

        logfire.debug('This is a debug log')
        ```

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    def info(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log an info message.

        ```py
        import logfire

        logfire.configure()

        logfire.info('This is an info log')
        ```

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    def notice(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log a notice message.

        ```py
        import logfire

        logfire.configure()

        logfire.notice('This is a notice log')
        ```

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    def warning(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log a warning message.

        ```py
        import logfire

        logfire.configure()

        logfire.warning('This is a warning log')
        ```

        `logfire.warn` is an alias of `logfire.warning`.

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    warn = warning
    def error(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log an error message.

        ```py
        import logfire

        logfire.configure()

        logfire.error('This is an error log')
        ```

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    def fatal(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = False, **attributes: Any) -> None:
        """Log a fatal message.

        ```py
        import logfire

        logfire.configure()

        logfire.fatal('This is a fatal log')
        ```

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
        """
    def exception(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _exc_info: ExcInfo = True, **attributes: Any) -> None:
        """The same as `error` but with `_exc_info=True` by default.

        This means that a traceback will be logged for any currently handled exception.

        Args:
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            _tags: An optional sequence of tags to include in the log.
            _exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.
        """
    def span(self, msg_template: str, /, *, _tags: Sequence[str] | None = None, _span_name: str | None = None, _level: LevelName | None = None, _links: Sequence[tuple[SpanContext, otel_types.Attributes]] = (), **attributes: Any) -> LogfireSpan:
        """Context manager for creating a span.

        ```py
        import logfire

        logfire.configure()

        with logfire.span('This is a span {a=}', a='data'):
            logfire.info('new log 1')
        ```

        Args:
            msg_template: The template for the span message.
            _span_name: The span name. If not provided, the `msg_template` will be used.
            _tags: An optional sequence of tags to include in the span.
            _level: An optional log level name.
            _links: An optional sequence of links to other spans. Each link is a tuple of a span context and attributes.
            attributes: The arguments to include in the span and format the message template with.
                Attributes starting with an underscore are not allowed.
        """
    @overload
    def instrument(self, msg_template: LiteralString | None = None, *, span_name: str | None = None, extract_args: bool | Iterable[str] = True, record_return: bool = False, allow_generator: bool = False) -> Callable[[Callable[P, R]], Callable[P, R]]:
        """Decorator for instrumenting a function as a span.

        ```py
        import logfire

        logfire.configure()


        @logfire.instrument('This is a span {a=}')
        def my_function(a: int):
            logfire.info('new log {a=}', a=a)
        ```

        Args:
            msg_template: The template for the span message. If not provided, the module and function name will be used.
            span_name: The span name. If not provided, the `msg_template` will be used.
            extract_args: By default, all function call arguments are logged as span attributes.
                Set to `False` to disable this, or pass an iterable of argument names to include.
            record_return: Set to `True` to record the return value of the function as an attribute.
                Ignored for generators.
            allow_generator: Set to `True` to prevent a warning when instrumenting a generator function.
                Read https://logfire.pydantic.dev/docs/guides/advanced/generators/#using-logfireinstrument first.
        """
    @overload
    def instrument(self, func: Callable[P, R]) -> Callable[P, R]:
        """Decorator for instrumenting a function as a span, with default configuration.

        ```py
        import logfire

        logfire.configure()


        @logfire.instrument
        def my_function(a: int):
            logfire.info('new log {a=}', a=a)
        ```
        """
    def log(self, level: LevelName | int, msg_template: str, attributes: dict[str, Any] | None = None, tags: Sequence[str] | None = None, exc_info: ExcInfo = False, console_log: bool | None = None) -> None:
        """Log a message.

        ```py
        import logfire

        logfire.configure()

        logfire.log('info', 'This is a log {a}', {'a': 'Apple'})
        ```

        Args:
            level: The level of the log.
            msg_template: The message to log.
            attributes: The attributes to bind to the log.
            tags: An optional sequence of tags to include in the log.
            exc_info: Set to an exception or a tuple as returned by [`sys.exc_info()`][sys.exc_info]
                to record a traceback with the log message.

                Set to `True` to use the currently handled exception.
            console_log: Whether to log to the console, defaults to `True`.
        """
    def with_tags(self, *tags: str) -> Logfire:
        """A new Logfire instance which always uses the given tags.

        ```py
        import logfire

        logfire.configure()

        local_logfire = logfire.with_tags('tag1')
        local_logfire.info('a log message', _tags=['tag2'])

        # This is equivalent to:
        logfire.info('a log message', _tags=['tag1', 'tag2'])
        ```

        Args:
            tags: The tags to add.

        Returns:
            A new Logfire instance with the `tags` added to any existing tags.
        """
    def with_trace_sample_rate(self, sample_rate: float) -> Logfire:
        """A new Logfire instance with the given sampling ratio applied.

        Args:
            sample_rate: The sampling ratio to use.

        Returns:
            A new Logfire instance with the sampling ratio applied.
        """
    def with_settings(self, *, tags: Sequence[str] = (), console_log: bool | None = None, custom_scope_suffix: str | None = None) -> Logfire:
        """A new Logfire instance which uses the given settings.

        Args:
            tags: Sequence of tags to include in the log.
            console_log: Whether to log to the console, defaults to `True`.
            custom_scope_suffix: A custom suffix to append to `logfire.` e.g. `logfire.loguru`.

                It should only be used when instrumenting another library with Logfire, such as structlog or loguru.

                See the `instrumenting_module_name` parameter on
                [TracerProvider.get_tracer][opentelemetry.sdk.trace.TracerProvider.get_tracer] for more info.

        Returns:
            A new Logfire instance with the given settings applied.
        """
    def force_flush(self, timeout_millis: int = 3000) -> bool:
        """Force flush all spans and metrics.

        Args:
            timeout_millis: The timeout in milliseconds.

        Returns:
            Whether the flush of spans was successful.
        """
    def log_slow_async_callbacks(self, slow_duration: float = 0.1) -> AbstractContextManager[None]:
        """Log a warning whenever a function running in the asyncio event loop blocks for too long.

        This works by patching the `asyncio.events.Handle._run` method.

        Args:
            slow_duration: the threshold in seconds for when a callback is considered slow.

        Returns:
            A context manager that will revert the patch when exited.
                This context manager doesn't take into account threads or other concurrency.
                Calling this method will immediately apply the patch
                without waiting for the context manager to be opened,
                i.e. it's not necessary to use this as a context manager.
        """
    def install_auto_tracing(self, modules: Sequence[str] | Callable[[AutoTraceModule], bool], *, min_duration: float, check_imported_modules: Literal['error', 'warn', 'ignore'] = 'error') -> None:
        """Install automatic tracing.

        See the [Auto-Tracing guide](https://logfire.pydantic.dev/docs/guides/onboarding_checklist/add_auto_tracing/)
        for more info.

        This will trace all non-generator function calls in the modules specified by the modules argument.
        It's equivalent to wrapping the body of every function in matching modules in `with logfire.span(...):`.

        !!! note
            This function MUST be called before any of the modules to be traced are imported.

            Generator functions will not be traced for reasons explained [here](https://logfire.pydantic.dev/docs/guides/advanced/generators/).

        This works by inserting a new meta path finder into `sys.meta_path`, so inserting another finder before it
        may prevent it from working.

        It relies on being able to retrieve the source code via at least one other existing finder in the meta path,
        so it may not work if standard finders are not present or if the source code is not available.
        A modified version of the source code is then compiled and executed in place of the original module.

        Args:
            modules: List of module names to trace, or a function which returns True for modules that should be traced.
                If a list is provided, any submodules within a given module will also be traced.
            min_duration: A minimum duration in seconds for which a function must run before it's traced.
                Setting to `0` causes all functions to be traced from the beginning.
                Otherwise, the first time(s) each function is called, it will be timed but not traced.
                Only after the function has run for at least `min_duration` will it be traced in subsequent calls.
            check_imported_modules: If this is `'error'` (the default), then an exception will be raised if any of the
                modules in `sys.modules` (i.e. modules that have already been imported) match the modules to trace.
                Set to `'warn'` to issue a warning instead, or `'ignore'` to skip the check.
        """
    def instrument_mcp(self, *, propagate_otel_context: bool = True) -> None:
        """Instrument the [MCP Python SDK](https://github.com/modelcontextprotocol/python-sdk).

        Instruments both the client and server side. If possible, calling this in both the client and server
        processes is recommended for nice distributed traces.

        Args:
            propagate_otel_context: Whether to enable propagation of the OpenTelemetry context
                for distributed tracing.
                Set to False to prevent setting extra fields like `traceparent` on the metadata of requests.
        """
    def instrument_pydantic(self, record: PydanticPluginRecordValues = 'all', include: Iterable[str] = (), exclude: Iterable[str] = ()) -> None:
        """Instrument Pydantic model validations.

        This must be called before defining and importing the model classes you want to instrument.
        See the [Pydantic integration guide](https://logfire.pydantic.dev/docs/integrations/pydantic/) for more info.

        Args:
            record: The record mode for the Pydantic plugin. It can be one of the following values:

                - `all`: Send traces and metrics for all events. This is default value.
                - `failure`: Send metrics for all validations and traces only for validation failures.
                - `metrics`: Send only metrics.
                - `off`: Disable instrumentation.
            include:
                By default, third party modules are not instrumented. This option allows you to include specific modules.
            exclude:
                Exclude specific modules from instrumentation.
        """
    @overload
    def instrument_pydantic_ai(self, obj: pydantic_ai.Agent | None = None, /, *, event_mode: Literal['attributes', 'logs'] = 'attributes', include_binary_content: bool | None = None, **kwargs: Any) -> None: ...
    @overload
    def instrument_pydantic_ai(self, obj: pydantic_ai.models.Model, /, *, event_mode: Literal['attributes', 'logs'] = 'attributes', include_binary_content: bool | None = None, **kwargs: Any) -> pydantic_ai.models.Model: ...
    def instrument_fastapi(self, app: FastAPI, *, capture_headers: bool = False, request_attributes_mapper: Callable[[Request | WebSocket, dict[str, Any]], dict[str, Any] | None] | None = None, excluded_urls: str | Iterable[str] | None = None, record_send_receive: bool = False, extra_spans: bool = False, **opentelemetry_kwargs: Any) -> AbstractContextManager[None]:
        """Instrument a FastAPI app so that spans and logs are automatically created for each request.

        Uses the [OpenTelemetry FastAPI Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/fastapi/fastapi.html)
        under the hood, with some additional features.

        Args:
            app: The FastAPI app to instrument.
            capture_headers: Set to `True` to capture all request and response headers.
            request_attributes_mapper: A function that takes a [`Request`][fastapi.Request] or [`WebSocket`][fastapi.WebSocket]
                and a dictionary of attributes and returns a new dictionary of attributes.
                The input dictionary will contain:

                - `values`: A dictionary mapping argument names of the endpoint function to parsed and validated values.
                - `errors`: A list of validation errors for any invalid inputs.

                The returned dictionary will be used as the attributes for a log message.
                If `None` is returned, no log message will be created.

                You can use this to e.g. only log validation errors, or nothing at all.
                You can also add custom attributes.

                The default implementation will return the input dictionary unchanged.
                The function mustn't modify the contents of `values` or `errors`.
            excluded_urls: A string of comma-separated regexes which will exclude a request from tracing if the full URL
                matches any of the regexes. This applies to both the Logfire and OpenTelemetry instrumentation.
                If not provided, the environment variables
                `OTEL_PYTHON_FASTAPI_EXCLUDED_URLS` and `OTEL_PYTHON_EXCLUDED_URLS` will be checked.
            record_send_receive: Set to `True` to allow the OpenTelemetry ASGI middleware to create send/receive spans.

                These are disabled by default to reduce overhead and the number of spans created,
                since many can be created for a single request, and they are not often useful.
                If enabled, they will be set to debug level, meaning they will usually still be hidden in the UI.
            extra_spans: Whether to include the extra 'FastAPI arguments' and 'endpoint function' spans.
            opentelemetry_kwargs: Additional keyword arguments to pass to the OpenTelemetry FastAPI instrumentation.

        Returns:
            A context manager that will revert the instrumentation when exited.
                This context manager doesn't take into account threads or other concurrency.
                Calling this method will immediately apply the instrumentation
                without waiting for the context manager to be opened,
                i.e. it's not necessary to use this as a context manager.
        """
    def instrument_openai(self, openai_client: openai.OpenAI | openai.AsyncOpenAI | type[openai.OpenAI] | type[openai.AsyncOpenAI] | None = None, *, suppress_other_instrumentation: bool = True) -> AbstractContextManager[None]:
        '''Instrument an OpenAI client so that spans are automatically created for each request.

        This instruments the [standard OpenAI SDK](https://pypi.org/project/openai/) package, for instrumentation
        of the OpenAI "agents" framework, see [`instrument_openai_agents()`][logfire.Logfire.instrument_openai_agents].

        The following methods are instrumented for both the sync and the async clients:

        - [`client.chat.completions.create`](https://platform.openai.com/docs/guides/text-generation/chat-completions-api) — with and without `stream=True`
        - [`client.completions.create`](https://platform.openai.com/docs/guides/text-generation/completions-api) — with and without `stream=True`
        - [`client.embeddings.create`](https://platform.openai.com/docs/guides/embeddings/how-to-get-embeddings)
        - [`client.images.generate`](https://platform.openai.com/docs/guides/images/generations)

        When `stream=True` a second span is created to instrument the streamed response.

        Example usage:

        ```python
        import logfire
        import openai

        client = openai.OpenAI()
        logfire.configure()
        logfire.instrument_openai(client)

        response = client.chat.completions.create(
            model=\'gpt-4\',
            messages=[
                {\'role\': \'system\', \'content\': \'You are a helpful assistant.\'},
                {\'role\': \'user\', \'content\': \'What is four plus five?\'},
            ],
        )
        print(\'answer:\', response.choices[0].message.content)
        ```

        Args:
            openai_client: The OpenAI client or class to instrument:

                - `None` (the default) to instrument both the `openai.OpenAI` and `openai.AsyncOpenAI` classes.
                - The `openai.OpenAI` class or a subclass
                - The `openai.AsyncOpenAI` class or a subclass
                - An instance of `openai.OpenAI`
                - An instance of `openai.AsyncOpenAI`

            suppress_other_instrumentation: If True, suppress any other OTEL instrumentation that may be otherwise
                enabled. In reality, this means the HTTPX instrumentation, which could otherwise be called since
                OpenAI uses HTTPX to make HTTP requests.

        Returns:
            A context manager that will revert the instrumentation when exited.
                Use of this context manager is optional.
        '''
    def instrument_openai_agents(self) -> None:
        """Instrument the [`agents`](https://github.com/openai/openai-agents-python) framework from OpenAI.

        For instrumentation of the standard OpenAI SDK package,
        see [`instrument_openai()`][logfire.Logfire.instrument_openai].
        """
    def instrument_anthropic(self, anthropic_client: anthropic.Anthropic | anthropic.AsyncAnthropic | anthropic.AnthropicBedrock | anthropic.AsyncAnthropicBedrock | type[anthropic.Anthropic] | type[anthropic.AsyncAnthropic] | type[anthropic.AnthropicBedrock] | type[anthropic.AsyncAnthropicBedrock] | None = None, *, suppress_other_instrumentation: bool = True) -> AbstractContextManager[None]:
        """Instrument an Anthropic client so that spans are automatically created for each request.

        The following methods are instrumented for both the sync and async clients:

        - [`client.messages.create`](https://docs.anthropic.com/en/api/messages)
        - [`client.messages.stream`](https://docs.anthropic.com/en/api/messages-streaming)
        - [`client.beta.tools.messages.create`](https://docs.anthropic.com/en/docs/tool-use)

        When `stream=True` a second span is created to instrument the streamed response.

        Example usage:

        ```python
        import logfire
        import anthropic

        client = anthropic.Anthropic()

        logfire.configure()
        logfire.instrument_anthropic(client)

        response = client.messages.create(
            model='claude-3-haiku-20240307',
            system='You are a helpful assistant.',
            messages=[
                {'role': 'user', 'content': 'What is four plus five?'},
            ],
        )
        print('answer:', response.content[0].text)
        ```

        Args:
            anthropic_client: The Anthropic client or class to instrument:
                - `None` (the default) to instrument all Anthropic client types
                - The `anthropic.Anthropic` or `anthropic.AnthropicBedrock` class or subclass
                - The `anthropic.AsyncAnthropic` or `anthropic.AsyncAnthropicBedrock` class or subclass
                - An instance of any of the above classes

            suppress_other_instrumentation: If True, suppress any other OTEL instrumentation that may be otherwise
                enabled. In reality, this means the HTTPX instrumentation, which could otherwise be called since
                OpenAI uses HTTPX to make HTTP requests.

        Returns:
            A context manager that will revert the instrumentation when exited.
                Use of this context manager is optional.
        """
    def instrument_google_genai(self, **kwargs: Any):
        """Instrument the [Google Gen AI SDK (`google-genai`)](https://googleapis.github.io/python-genai/).

        !!! note
            To capture message contents (i.e. prompts and completions), set the environment variable
            `OTEL_INSTRUMENTATION_GENAI_CAPTURE_MESSAGE_CONTENT` to `true`.

        Uses the `GoogleGenAiSdkInstrumentor().instrument()` method of the
        [`opentelemetry-instrumentation-google-genai`](https://pypi.org/project/opentelemetry-instrumentation-google-genai/)
        package, to which it passes `**kwargs`.
        """
    def instrument_litellm(self, **kwargs: Any):
        """Instrument the [LiteLLM](https://docs.litellm.ai/) Python SDK.

        !!! warning
            This currently works best if all arguments of instrumented methods are passed as keyword arguments,
            e.g. `litellm.completion(model=model, messages=messages)`.

        Uses the `LiteLLMInstrumentor().instrument()` method of the
        [`openinference-instrumentation-litellm`](https://pypi.org/project/openinference-instrumentation-litellm/)
        package, to which it passes `**kwargs`.
        """
    def instrument_print(self) -> AbstractContextManager[None]:
        """Instrument the built-in `print` function so that calls to it are logged.

        If Logfire is configured with [`inspect_arguments=True`][logfire.configure(inspect_arguments)],
        the names of the arguments passed to `print` will be included in the log attributes
        and will be used for scrubbing.

        The fallback attribute name `logfire.print_args` will be used if:

         - `inspect_arguments` is `False`
         - Inspection fails for any reason
         - Multiple starred arguments are used (e.g. `print(*args1, *args2)`)
            in which case names can't be unambiguously determined.

        Returns:
            A context manager that will revert the instrumentation when exited.
                Use of this context manager is optional.
        """
    def instrument_asyncpg(self, **kwargs: Any) -> None:
        """Instrument the `asyncpg` module so that spans are automatically created for each query."""
    @overload
    def instrument_httpx(self, client: httpx.Client, *, capture_all: bool = False, capture_headers: bool = False, capture_request_body: bool = False, capture_response_body: bool = False, request_hook: HttpxRequestHook | None = None, response_hook: HttpxResponseHook | None = None, **kwargs: Any) -> None: ...
    @overload
    def instrument_httpx(self, client: httpx.AsyncClient, *, capture_all: bool = False, capture_headers: bool = False, capture_request_body: bool = False, capture_response_body: bool = False, request_hook: HttpxRequestHook | HttpxAsyncRequestHook | None = None, response_hook: HttpxResponseHook | HttpxAsyncResponseHook | None = None, **kwargs: Any) -> None: ...
    @overload
    def instrument_httpx(self, client: None = None, *, capture_all: bool = False, capture_headers: bool = False, capture_request_body: bool = False, capture_response_body: bool = False, request_hook: HttpxRequestHook | None = None, response_hook: HttpxResponseHook | None = None, async_request_hook: HttpxAsyncRequestHook | None = None, async_response_hook: HttpxAsyncResponseHook | None = None, **kwargs: Any) -> None: ...
    def instrument_celery(self, **kwargs: Any) -> None:
        """Instrument `celery` so that spans are automatically created for each task.

        Uses the
        [OpenTelemetry Celery Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/celery/celery.html)
        library.

        Args:
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` method, for future compatibility.
        """
    def instrument_django(self, capture_headers: bool = False, is_sql_commentor_enabled: bool | None = None, request_hook: Callable[[trace_api.Span, HttpRequest], None] | None = None, response_hook: Callable[[trace_api.Span, HttpRequest, HttpResponse], None] | None = None, excluded_urls: str | None = None, **kwargs: Any) -> None:
        """Instrument `django` so that spans are automatically created for each web request.

        Uses the
        [OpenTelemetry Django Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/django/django.html)
        library.

        Args:
            capture_headers: Set to `True` to capture all request and response headers.
            is_sql_commentor_enabled: Adds comments to SQL queries performed by Django,
                so that database logs have additional context.

                This does NOT create spans/logs for the queries themselves.
                For that you need to instrument the database driver, e.g. with `logfire.instrument_psycopg()`.

                To configure the SQL Commentor, see the OpenTelemetry documentation for the
                values that need to be added to `settings.py`.

            request_hook: A function called right after a span is created for a request.
                The function should accept two arguments: the span and the Django `Request` object.

            response_hook: A function called right before a span is finished for the response.
                The function should accept three arguments:
                the span, the Django `Request` object, and the Django `Response` object.

            excluded_urls: A string containing a comma-delimited list of regexes used to exclude URLs from tracking.

            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` method,
                for future compatibility.

        """
    def instrument_requests(self, excluded_urls: str | None = None, request_hook: Callable[[Span, requests.PreparedRequest], None] | None = None, response_hook: Callable[[Span, requests.PreparedRequest, requests.Response], None] | None = None, **kwargs: Any) -> None:
        """Instrument the `requests` module so that spans are automatically created for each request.

        Args:
            excluded_urls: A string containing a comma-delimited list of regexes used to exclude URLs from tracking
            request_hook: A function called right after a span is created for a request.
            response_hook: A function called right before a span is finished for the response.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods, for future compatibility.
        """
    @overload
    def instrument_psycopg(self, conn_or_module: PsycopgConnection | Psycopg2Connection, **kwargs: Any) -> None: ...
    @overload
    def instrument_psycopg(self, conn_or_module: None | Literal['psycopg', 'psycopg2'] | ModuleType = None, enable_commenter: bool = False, commenter_options: PsycopgCommenterOptions | None = None, **kwargs: Any) -> None: ...
    def instrument_flask(self, app: Flask, *, capture_headers: bool = False, enable_commenter: bool = True, commenter_options: FlaskCommenterOptions | None = None, excluded_urls: str | None = None, request_hook: FlaskRequestHook | None = None, response_hook: FlaskResponseHook | None = None, **kwargs: Any) -> None:
        """Instrument `app` so that spans are automatically created for each request.

        Uses the
        [OpenTelemetry Flask Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/flask/flask.html)
        library, specifically `FlaskInstrumentor().instrument_app()`, to which it passes `**kwargs`.

        Args:
            app: The Flask app to instrument.
            capture_headers: Set to `True` to capture all request and response headers.
            enable_commenter: Adds comments to SQL queries performed by Flask, so that database logs have additional context.
            commenter_options: Configure the tags to be added to the SQL comments.
                See more about it on the [SQLCommenter Configurations](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/flask/flask.html#sqlcommenter-configurations).
            excluded_urls: A string containing a comma-delimited list of regexes used to exclude URLs from tracking.
            request_hook: A function called right after a span is created for a request.
            response_hook: A function called right before a span is finished for the response.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry Flask instrumentation.
        """
    def instrument_starlette(self, app: Starlette, *, capture_headers: bool = False, record_send_receive: bool = False, server_request_hook: ServerRequestHook | None = None, client_request_hook: ClientRequestHook | None = None, client_response_hook: ClientResponseHook | None = None, **kwargs: Any) -> None:
        """Instrument `app` so that spans are automatically created for each request.

        Uses the
        [OpenTelemetry Starlette Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/starlette/starlette.html)
        library, specifically `StarletteInstrumentor.instrument_app()`, to which it passes `**kwargs`.

        Args:
            app: The Starlette app to instrument.
            capture_headers: Set to `True` to capture all request and response headers.
            record_send_receive: Set to `True` to allow the OpenTelemetry ASGI middleware to create send/receive spans.

                These are disabled by default to reduce overhead and the number of spans created,
                since many can be created for a single request, and they are not often useful.
                If enabled, they will be set to debug level, meaning they will usually still be hidden in the UI.
            server_request_hook: A function that receives a server span and the ASGI scope for every incoming request.
            client_request_hook: A function that receives a span, the ASGI scope and the receive ASGI message for every ASGI receive event.
            client_response_hook: A function that receives a span, the ASGI scope and the send ASGI message for every ASGI send event.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry Starlette instrumentation.
        """
    def instrument_asgi(self, app: ASGIApp, capture_headers: bool = False, record_send_receive: bool = False, **kwargs: Unpack[ASGIInstrumentKwargs]) -> ASGIApp:
        """Instrument `app` so that spans are automatically created for each request.

        Uses the ASGI [`OpenTelemetryMiddleware`][opentelemetry.instrumentation.asgi.OpenTelemetryMiddleware] under
        the hood, to which it passes `**kwargs`.

        Warning:
            Instead of modifying the app in place, this method returns the instrumented ASGI application.

        Args:
            app: The ASGI application to instrument.
            capture_headers: Set to `True` to capture all request and response headers.
            record_send_receive: Set to `True` to allow the OpenTelemetry ASGI middleware to create send/receive spans.

                These are disabled by default to reduce overhead and the number of spans created,
                since many can be created for a single request, and they are not often useful.
                If enabled, they will be set to debug level, meaning they will usually still be hidden in the UI.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry ASGI middleware.

        Returns:
            The instrumented ASGI application.
        """
    def instrument_wsgi(self, app: WSGIApplication, capture_headers: bool = False, request_hook: WSGIRequestHook | None = None, response_hook: WSGIResponseHook | None = None, **kwargs: Any) -> WSGIApplication:
        """Instrument `app` so that spans are automatically created for each request.

        Uses the WSGI [`OpenTelemetryMiddleware`][opentelemetry.instrumentation.wsgi.OpenTelemetryMiddleware] under
        the hood, to which it passes `**kwargs`.

        Warning:
            Instead of modifying the app in place, this method returns the instrumented WSGI application.

        Args:
            app: The WSGI application to instrument.
            capture_headers: Set to `True` to capture all request and response headers.
            request_hook: A function called right after a span is created for a request.
            response_hook: A function called right before a span is finished for the response.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry WSGI middleware.

        Returns:
            The instrumented WSGI application.
        """
    def instrument_aiohttp_client(self, *, capture_headers: bool = False, capture_response_body: bool = False, request_hook: AiohttpClientRequestHook | None = None, response_hook: AiohttpClientResponseHook | None = None, **kwargs: Any) -> None:
        """Instrument the `aiohttp` module so that spans are automatically created for each client request.

        Uses the
        [OpenTelemetry aiohttp client Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/aiohttp_client/aiohttp_client.html)
        library, specifically `AioHttpClientInstrumentor().instrument()`, to which it passes `**kwargs`.
        """
    def instrument_aiohttp_server(self, **kwargs: Any) -> None:
        """Instrument the `aiohttp` module so that spans are automatically created for each server request.

        Uses the
        [OpenTelemetry aiohttp server Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/aiohttp_server/aiohttp_server.html)
        library, specifically `AioHttpServerInstrumentor().instrument()`, to which it passes `**kwargs`.
        """
    def instrument_sqlalchemy(self, engine: AsyncEngine | Engine | None = None, engines: Iterable[AsyncEngine | Engine] | None = None, enable_commenter: bool = False, commenter_options: SQLAlchemyCommenterOptions | None = None, **kwargs: Any) -> None:
        """Instrument the `sqlalchemy` module so that spans are automatically created for each query.

        Uses the
        [OpenTelemetry SQLAlchemy Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/sqlalchemy/sqlalchemy.html)
        library, specifically `SQLAlchemyInstrumentor().instrument()`, to which it passes `**kwargs`.

        Args:
            engine: The `sqlalchemy` engine to instrument, or `None` to instrument all engines.
            enable_commenter: Adds comments to SQL queries performed by SQLAlchemy, so that database logs have additional context.
            commenter_options: Configure the tags to be added to the SQL comments.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods.
        """
    def instrument_sqlite3(self, conn: SQLite3Connection = None, **kwargs: Any) -> SQLite3Connection:
        """Instrument the `sqlite3` module or a specific connection so that spans are automatically created for each operation.

        Uses the
        [OpenTelemetry SQLite3 Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/sqlite3/sqlite3.html)
        library.

        Args:
            conn: The `sqlite3` connection to instrument, or `None` to instrument all connections.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods.

        Returns:
            If a connection is provided, returns the instrumented connection. If no connection is provided, returns `None`.
        """
    def instrument_aws_lambda(self, lambda_handler: LambdaHandler, event_context_extractor: Callable[[LambdaEvent], Context] | None = None, **kwargs: Any) -> None:
        """Instrument AWS Lambda so that spans are automatically created for each invocation.

        Uses the
        [OpenTelemetry AWS Lambda Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/aws_lambda/aws_lambda.html)
        library, specifically `AwsLambdaInstrumentor().instrument()`, to which it passes `**kwargs`.

        Args:
            lambda_handler: The lambda handler function to instrument.
            event_context_extractor: A function that returns an OTel Trace Context given the Lambda Event the AWS.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods for future compatibility.
        """
    def instrument_pymongo(self, capture_statement: bool = False, request_hook: Callable[[Span, CommandStartedEvent], None] | None = None, response_hook: Callable[[Span, CommandSucceededEvent], None] | None = None, failed_hook: Callable[[Span, CommandFailedEvent], None] | None = None, **kwargs: Any) -> None:
        """Instrument the `pymongo` module so that spans are automatically created for each operation.

        Uses the
        [OpenTelemetry pymongo Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/pymongo/pymongo.html)
        library, specifically `PymongoInstrumentor().instrument()`, to which it passes `**kwargs`.

        Args:
            capture_statement: Set to `True` to capture the statement in the span attributes.
            request_hook: A function called when a command is sent to the server.
            response_hook: A function that is called when a command is successfully completed.
            failed_hook: A function that is called when a command fails.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods for future compatibility.
        """
    def instrument_redis(self, capture_statement: bool = False, request_hook: RedisRequestHook | None = None, response_hook: RedisResponseHook | None = None, **kwargs: Any) -> None:
        """Instrument the `redis` module so that spans are automatically created for each operation.

        Uses the
        [OpenTelemetry Redis Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/redis/redis.html)
        library, specifically `RedisInstrumentor().instrument()`, to which it passes `**kwargs`.

        Args:
            capture_statement: Set to `True` to capture the statement in the span attributes.
            request_hook: A function that is called before performing the request.
            response_hook: A function that is called after receiving the response.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods for future compatibility.
        """
    def instrument_mysql(self, conn: MySQLConnection = None, **kwargs: Any) -> MySQLConnection:
        """Instrument the `mysql` module or a specific MySQL connection so that spans are automatically created for each operation.

        Uses the
        [OpenTelemetry MySQL Instrumentation](https://opentelemetry-python-contrib.readthedocs.io/en/latest/instrumentation/mysql/mysql.html)
        library.

        Args:
            conn: The `mysql` connection to instrument, or `None` to instrument all connections.
            **kwargs: Additional keyword arguments to pass to the OpenTelemetry `instrument` methods.

        Returns:
            If a connection is provided, returns the instrumented connection. If no connection is provided, returns None.
        """
    def instrument_system_metrics(self, config: SystemMetricsConfig | None = None, base: SystemMetricsBase = 'basic') -> None:
        """Collect system metrics.

        See [the guide](https://logfire.pydantic.dev/docs/integrations/system-metrics/) for more information.

        Args:
            config: A dictionary where the keys are metric names
                and the values are optional further configuration for that metric.
            base: A string indicating the base config dictionary which `config` will be merged with,
                or `None` for an empty base config.
        """
    def metric_counter(self, name: str, *, unit: str = '', description: str = '') -> Counter:
        """Create a counter metric.

        A counter is a cumulative metric that represents a single numerical value that only ever goes up.

        ```py
        import logfire

        logfire.configure()
        counter = logfire.metric_counter('exceptions', unit='1', description='Number of exceptions caught')

        try:
            raise Exception('oops')
        except Exception:
            counter.add(1)
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#counter) about
        counters.

        Args:
            name: The name of the metric.
            unit: The unit of the metric.
            description: The description of the metric.

        Returns:
            The counter metric.
        """
    def metric_histogram(self, name: str, *, unit: str = '', description: str = '') -> Histogram:
        """Create a histogram metric.

        A histogram is a metric that samples observations (usually things like request durations or response sizes).

        ```py
        import logfire

        logfire.configure()
        histogram = logfire.metric_histogram('bank.amount_transferred', unit='$', description='Amount transferred')


        def transfer(amount: int):
            histogram.record(amount)
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#histogram) about

        Args:
            name: The name of the metric.
            unit: The unit of the metric.
            description: The description of the metric.

        Returns:
            The histogram metric.
        """
    def metric_gauge(self, name: str, *, unit: str = '', description: str = '') -> Gauge:
        """Create a gauge metric.

        Gauge is a synchronous instrument which can be used to record non-additive measurements.

        ```py
        import logfire

        logfire.configure()
        gauge = logfire.metric_gauge('system.cpu_usage', unit='%', description='CPU usage')


        def update_cpu_usage(cpu_percent):
            gauge.set(cpu_percent)
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#gauge) about gauges.

        Args:
            name: The name of the metric.
            unit: The unit of the metric.
            description: The description of the metric.

        Returns:
            The gauge metric.
        """
    def metric_up_down_counter(self, name: str, *, unit: str = '', description: str = '') -> UpDownCounter:
        """Create an up-down counter metric.

        An up-down counter is a cumulative metric that represents a single numerical value that can be adjusted up or
        down.

        ```py
        import logfire

        logfire.configure()
        up_down_counter = logfire.metric_up_down_counter('users.logged_in', unit='1', description='Users logged in')


        def on_login(user):
            up_down_counter.add(1)


        def on_logout(user):
            up_down_counter.add(-1)
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#updowncounter) about
        up-down counters.

        Args:
            name: The name of the metric.
            unit: The unit of the metric.
            description: The description of the metric.

        Returns:
            The up-down counter metric.
        """
    def metric_counter_callback(self, name: str, *, callbacks: Sequence[CallbackT], unit: str = '', description: str = '') -> None:
        """Create a counter metric that uses a callback to collect observations.

        The callback is called every 60 seconds in a background thread.

        The counter metric is a cumulative metric that represents a single numerical value that only ever goes up.

        ```py
        import logfire
        import psutil
        from opentelemetry.metrics import CallbackOptions, Observation

        logfire.configure()


        def cpu_usage_callback(options: CallbackOptions):
            cpu_percents = psutil.cpu_percent(percpu=True)

            for i, cpu_percent in enumerate(cpu_percents):
                yield Observation(cpu_percent, {'cpu': i})


        cpu_usage_counter = logfire.metric_counter_callback(
            'system.cpu.usage',
            callbacks=[cpu_usage_callback],
            unit='%',
            description='CPU usage',
        )
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#asynchronous-counter)
        about asynchronous counter.

        Args:
            name: The name of the metric.
            callbacks: A sequence of callbacks that return an iterable of
                [Observation](https://opentelemetry-python.readthedocs.io/en/latest/api/metrics.html#opentelemetry.metrics.Observation).
            unit: The unit of the metric.
            description: The description of the metric.
        """
    def metric_gauge_callback(self, name: str, callbacks: Sequence[CallbackT], *, unit: str = '', description: str = '') -> None:
        """Create a gauge metric that uses a callback to collect observations.

        The callback is called every 60 seconds in a background thread.

        The gauge metric is a metric that represents a single numerical value that can arbitrarily go up and down.

        ```py
        import threading

        import logfire
        from opentelemetry.metrics import CallbackOptions, Observation

        logfire.configure()


        def thread_count_callback(options: CallbackOptions):
            yield Observation(threading.active_count())


        logfire.metric_gauge_callback(
            'system.thread_count',
            callbacks=[thread_count_callback],
            unit='1',
            description='Number of threads',
        )
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#asynchronous-gauge)
        about asynchronous gauge.

        Args:
            name: The name of the metric.
            callbacks: A sequence of callbacks that return an iterable of
                [Observation](https://opentelemetry-python.readthedocs.io/en/latest/api/metrics.html#opentelemetry.metrics.Observation).
            unit: The unit of the metric.
            description: The description of the metric.
        """
    def metric_up_down_counter_callback(self, name: str, callbacks: Sequence[CallbackT], *, unit: str = '', description: str = '') -> None:
        """Create an up-down counter metric that uses a callback to collect observations.

        The callback is called every 60 seconds in a background thread.

        The up-down counter is a cumulative metric that represents a single numerical value that can be adjusted up or
        down.

        ```py
        import logfire
        from opentelemetry.metrics import CallbackOptions, Observation

        logfire.configure()

        items = []


        def inventory_callback(options: CallbackOptions):
            yield Observation(len(items))


        logfire.metric_up_down_counter_callback(
            name='store.inventory',
            description='Number of items in the inventory',
            callbacks=[inventory_callback],
        )
        ```

        See the [Opentelemetry documentation](https://opentelemetry.io/docs/specs/otel/metrics/api/#asynchronous-updowncounter)
        about asynchronous up-down counters.

        Args:
            name: The name of the metric.
            callbacks: A sequence of callbacks that return an iterable of
                [Observation](https://opentelemetry-python.readthedocs.io/en/latest/api/metrics.html#opentelemetry.metrics.Observation).
            unit: The unit of the metric.
            description: The description of the metric.
        """
    def suppress_scopes(self, *scopes: str) -> None:
        """Prevent spans and metrics from being created for the given OpenTelemetry scope names.

        To get the scope name of a span/metric,
        check the value of the `otel_scope_name` column in the Logfire database.
        """
    def shutdown(self, timeout_millis: int = 30000, flush: bool = True) -> bool:
        """Shut down all tracers and meters.

        This will clean up any resources used by the tracers and meters and flush any remaining spans and metrics.

        Args:
            timeout_millis: The timeout in milliseconds.
            flush: Whether to flush remaining spans and metrics before shutting down.

        Returns:
            `False` if the timeout was reached before the shutdown was completed, `True` otherwise.
        """

class FastLogfireSpan:
    """A simple version of `LogfireSpan` optimized for auto-tracing."""
    def __init__(self, span: trace_api.Span) -> None: ...
    def __enter__(self) -> FastLogfireSpan: ...
    @handle_internal_errors
    def __exit__(self, exc_type: type[BaseException] | None, exc_value: BaseException | None, traceback: Any) -> None: ...

class LogfireSpan(ReadableSpan):
    def __init__(self, span_name: str, otlp_attributes: dict[str, otel_types.AttributeValue], tracer: Tracer, json_schema_properties: JsonSchemaProperties, links: Sequence[tuple[SpanContext, otel_types.Attributes]]) -> None: ...
    def __getattr__(self, name: str) -> Any: ...
    def __enter__(self) -> LogfireSpan: ...
    @handle_internal_errors
    def __exit__(self, exc_type: type[BaseException] | None, exc_value: BaseException | None, traceback: Any) -> None: ...
    @property
    def message_template(self) -> str | None: ...
    @property
    def tags(self) -> tuple[str, ...]: ...
    @tags.setter
    @handle_internal_errors
    def tags(self, new_tags: Sequence[str]) -> None:
        """Set or add tags to the span."""
    @property
    def message(self) -> str: ...
    @message.setter
    def message(self, message: str): ...
    @handle_internal_errors
    def set_attribute(self, key: str, value: Any) -> None:
        """Sets an attribute on the span.

        Args:
            key: The key of the attribute.
            value: The value of the attribute.
        """
    def set_attributes(self, attributes: dict[str, Any]) -> None:
        """Sets the given attributes on the span."""
    def add_link(self, context: SpanContext, attributes: otel_types.Attributes = None) -> None: ...
    def record_exception(self, exception: BaseException, attributes: otel_types.Attributes = None, timestamp: int | None = None, escaped: bool = False) -> None:
        """Records an exception as a span event.

        Delegates to the OpenTelemetry SDK `Span.record_exception` method.
        """
    def is_recording(self) -> bool: ...
    @handle_internal_errors
    def set_level(self, level: LevelName | int):
        """Set the log level of this span."""

class NoopSpan:
    """Implements the same methods as `LogfireSpan` but does nothing.

    Used in place of `LogfireSpan` and `FastLogfireSpan` when an exception occurs during span creation.
    This way code like:

        with logfire.span(...) as span:
            span.set_attribute(...)

    doesn't raise an error even if `logfire.span` fails internally.
    If `logfire.span` just returned `None` then the `with` block and the `span.set_attribute` call would raise an error.

    TODO this should also be used when tracing is disabled, e.g. before `logfire.configure()` has been called.
    """
    def __init__(self, /, *_args: Any, **__kwargs: Any) -> None: ...
    def __getattr__(self, _name: str) -> Any: ...
    def __enter__(self) -> NoopSpan: ...
    def __exit__(self, exc_type: type[BaseException] | None, exc_value: BaseException | None, traceback: Any) -> None: ...
    @property
    def message_template(self) -> str: ...
    @property
    def tags(self) -> tuple[str, ...]: ...
    @tags.setter
    def tags(self, new_tags: Sequence[str]) -> None: ...
    @property
    def message(self) -> str: ...
    @message.setter
    def message(self, message: str): ...
    def is_recording(self) -> bool: ...
AttributesValueType = TypeVar('AttributesValueType', bound=Any | otel_types.AttributeValue)

def prepare_otlp_attributes(attributes: dict[str, Any]) -> dict[str, otel_types.AttributeValue]:
    """Prepare attributes for sending to OpenTelemetry.

    This will convert any non-OpenTelemetry compatible types to JSON.
    """
def prepare_otlp_attribute(value: Any) -> otel_types.AttributeValue:
    """Convert a user attribute to an OpenTelemetry compatible type."""
def set_user_attributes_on_raw_span(span: Span, attributes: dict[str, Any]) -> None: ...
P = ParamSpec('P')
R = TypeVar('R')
